Lead, AI Engineering
Bain & Company
Location
🇺🇸 Washington, United States
Type
full_time
Salary
Undisclosed
Posted
10h ago
Job Description
What Makes Us A Great Place To Work We are proud to be consistently recognized as one of the world’s best places to work. We are currently the top ranked consulting firm on Glassdoor’s Best Places to Work list and have earned the #1 spot a record seven times. Extraordinary teams are at the heart of our business strategy, but these don’t happen by chance. They require intentional focus on bringing together a broad set of backgrounds, cultures, experiences, perspectives, and skills in a supportive and inclusive work environment. We hire people with exceptional talent and create an environment in which every individual can thrive professionally and personally. About Bain AI, Insights & Solutions (AIS) Bain’s AI, Insights & Solutions (AIS) team works with clients to design and deliver AI-powered solutions that create measurable business impact. You’ll operate in multidisciplinary teams alongside Bain consultants, other experts in product, design, architecture and engineering, and client stakeholders, translating ambiguous business problems into robust AI applications that can be piloted, scaled, and adopted. The Impact You’ll Have Bain works with clients on board-level and executive priorities, helping deliver step-change results across growth, productivity, and resilience. In that context, AI is rarely a point solution. The most meaningful outcomes come from building AI as part of an integrated system that combines technology with redesigned processes, operating model changes, and adoption at scale across the organization. As an AI Engineer in AIS, you will build the technical core of these transformations and work as part of broader Bain consulting teams to move solutions from prototype to real adoption. The result is measurable impact at the company or enterprise level and, in many cases, helps clients set new performance standards for their industries.
The Role
The Lead AI Engineer will design, build, and ship generative AI systems and agentic solutions for Bain’s clients. You will contribute across the full development lifecycle — from early experimentation and prototyping through to production deployment — collaborating closely with senior engineers, product managers, and data scientists. This is a hands-on individual contributor role with growing influence on technical direction and an opportunity to begin mentoring more junior team members. You will have opportunities to work with major AI ecosystem partners through Bain’s partnerships, collaborating on real client deployments and helping shape how emerging capabilities are applied in enterprise settings. Bain offers significant learning and growth opportunities through the breadth and depth of problems we solve, the level of impact we help clients achieve, and our apprenticeship model. You will learn by doing, with support from experienced teammates, frequent feedback, and increasing responsibility over time. What You’ll Do • Contribute to the design, development, and deployment of end-to-end generative AI systems, including multi-agent workflows and production-grade AI applications. • Build and iterate on multi-component AI pipelines, including: • Retrieval-Augmented Generation (RAG) • Fine-tuning and parameter-efficient tuning • Embedding generation and optimization • Hybrid retrieval strategies (vector, graph, keyword) • Implement reasoning, tool use, function calling, and orchestration across AI workflows • Build and contribute to agentic systems, applying sound engineering principles around separation of concerns, memory architecture, and tool integration • Contribute across the full stack: model experimentation, evaluation design, and production system deployment • Build and maintain APIs, microservices, CI/CD pipelines, and cloud-native deployments with attention to observability and reliability • Support and help build GenAIOps processes for automated testing, regression evaluation, latency monitoring, and continual improvement • Balance performance, safety, responsible AI principles, and cost across system design: • Implement guardrails, fallbacks, red-teaming strategies, and human-in-the-loop (HITL) workflows • Partner with global ethics teams to ensure alignment with Bain’s Responsible AI standards • Build automated evaluation suites integrating user signals, continual learning cycles, and ongoing model updates • Design and implement evaluation frameworks covering: • Hallucination rate and factual consistency • Relevance and precision/recall • Latency, throughput, and system-level performance • Cost tracking and efficiency • Partner closely with product, engineering, data science, ethics, and infrastructure teams to build robust, compliant AI systems • Contribute technical insights and communicate findings clearly to cross-functional stakeholders and, where relevant, clients • Share knowledge with peers and support a culture of technical learning around RAG, agents, prompt engineering, and AI safety What We’re Looking For (